WiFi sensing has been evolving rapidly in recent years. Empowered by propagation models and deep learning methods, many challenging applications are realized such as WiFi-based human activity recognition and gesture recognition. However, in contrast to deep learning for visual recognition and natural language processing, no sufficiently comprehensive public benchmark exists. In this paper, we review the recent progress on deep learning enabled WiFi sensing, and then propose a benchmark, SenseFi, to study the effectiveness of various deep learning models for WiFi sensing. These advanced models are compared in terms of distinct sensing tasks, WiFi platforms, recognition accuracy, model size, computational complexity, feature transferability, and adaptability of unsupervised learning. It is also regarded as a tutorial for deep learning based WiFi sensing, starting from CSI hardware platform to sensing algorithms. The extensive experiments provide us with experiences in deep model design, learning strategy skills and training techniques for real-world applications. To the best of our knowledge, this is the first benchmark with an open-source library for deep learning in WiFi sensing research. The benchmark codes are available at https://github.com/xyanchen/WiFi-CSI-Sensing-Benchmark.
翻译:近些年来,WiFi遥感工作一直在迅速发展。通过传播模型和深层学习方法,这些先进的模型被赋予了能力,许多具有挑战性的应用已经实现,例如WiFi人类活动的识别和姿态识别。然而,与对视觉识别和自然语言处理的深入学习相比,没有足够全面的公共基准。在本文件中,我们审查了最近在深层学习功能WiFi遥感方面取得的进展,然后提出了一个基准,即SenseFi,以研究WiFi遥感的各种深层学习模型的有效性。这些先进的模型在不同的遥感任务、WiFi平台、识别精确度、模型大小、计算复杂性、特征可转移性以及不受监督的学习的适应性等方面进行了比较。基准代码还被视为一种基于WiFi遥感的深层学习辅导,从CSI硬件平台开始,到感测算算算法。广泛的实验为我们提供了深层模型设计、学习战略技能和实际应用培训技术方面的经验。我们最了解的情况是,这是第一个基准,有一个开放源图书馆,用于WiFiFi遥感研究的深层学习。基准代码可以在 http://xyanchenchench.com/wenchench/Wichenche/Wi-sching-Siming-smakinging。